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Does big data serve policy? Not without context. An experiment with in silico social science

The DARPA Ground Truth project sought to evaluate social science by constructing four varied simulated social worlds with hidden causality and unleashed teams of scientists to collect data, discover their causal structure, predict their future, and prescribe policies to create desired outcomes. This...

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Autores principales: Graziul, Chris, Belikov, Alexander, Chattopadyay, Ishanu, Chen, Ziwen, Fang, Hongbo, Girdhar, Anuraag, Jia, Xiaoshuang, Krafft, P. M., Kleiman-Weiner, Max, Lewis, Candice, Liang, Chen, Muchovej, John, Vientós, Alejandro, Young, Meg, Evans, James
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9713146/
https://www.ncbi.nlm.nih.gov/pubmed/36471867
http://dx.doi.org/10.1007/s10588-022-09362-3
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author Graziul, Chris
Belikov, Alexander
Chattopadyay, Ishanu
Chen, Ziwen
Fang, Hongbo
Girdhar, Anuraag
Jia, Xiaoshuang
Krafft, P. M.
Kleiman-Weiner, Max
Lewis, Candice
Liang, Chen
Muchovej, John
Vientós, Alejandro
Young, Meg
Evans, James
author_facet Graziul, Chris
Belikov, Alexander
Chattopadyay, Ishanu
Chen, Ziwen
Fang, Hongbo
Girdhar, Anuraag
Jia, Xiaoshuang
Krafft, P. M.
Kleiman-Weiner, Max
Lewis, Candice
Liang, Chen
Muchovej, John
Vientós, Alejandro
Young, Meg
Evans, James
author_sort Graziul, Chris
collection PubMed
description The DARPA Ground Truth project sought to evaluate social science by constructing four varied simulated social worlds with hidden causality and unleashed teams of scientists to collect data, discover their causal structure, predict their future, and prescribe policies to create desired outcomes. This large-scale, long-term experiment of in silico social science, about which the ground truth of simulated worlds was known, but not by us, reveals the limits of contemporary quantitative social science methodology. First, problem solving without a shared ontology—in which many world characteristics remain existentially uncertain—poses strong limits to quantitative analysis even when scientists share a common task, and suggests how they could become insurmountable without it. Second, data labels biased the associations our analysts made and assumptions they employed, often away from the simulated causal processes those labels signified, suggesting limits on the degree to which analytic concepts developed in one domain may port to others. Third, the current standard for computational social science publication is a demonstration of novel causes, but this limits the relevance of models to solve problems and propose policies that benefit from the simpler and less surprising answers associated with most important causes, or the combination of all causes. Fourth, most singular quantitative methods applied on their own did not help to solve most analytical challenges, and we explored a range of established and emerging methods, including probabilistic programming, deep neural networks, systems of predictive probabilistic finite state machines, and more to achieve plausible solutions. However, despite these limitations common to the current practice of computational social science, we find on the positive side that even imperfect knowledge can be sufficient to identify robust prediction if a more pluralistic approach is applied. Applying competing approaches by distinct subteams, including at one point the vast TopCoder.com global community of problem solvers, enabled discovery of many aspects of the relevant structure underlying worlds that singular methods could not. Together, these lessons suggest how different a policy-oriented computational social science would be than the computational social science we have inherited. Computational social science that serves policy would need to endure more failure, sustain more diversity, maintain more uncertainty, and allow for more complexity than current institutions support.
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spelling pubmed-97131462022-12-01 Does big data serve policy? Not without context. An experiment with in silico social science Graziul, Chris Belikov, Alexander Chattopadyay, Ishanu Chen, Ziwen Fang, Hongbo Girdhar, Anuraag Jia, Xiaoshuang Krafft, P. M. Kleiman-Weiner, Max Lewis, Candice Liang, Chen Muchovej, John Vientós, Alejandro Young, Meg Evans, James Comput Math Organ Theory S.I. : Ground Truth: in silico Social Science (GTIS3) The DARPA Ground Truth project sought to evaluate social science by constructing four varied simulated social worlds with hidden causality and unleashed teams of scientists to collect data, discover their causal structure, predict their future, and prescribe policies to create desired outcomes. This large-scale, long-term experiment of in silico social science, about which the ground truth of simulated worlds was known, but not by us, reveals the limits of contemporary quantitative social science methodology. First, problem solving without a shared ontology—in which many world characteristics remain existentially uncertain—poses strong limits to quantitative analysis even when scientists share a common task, and suggests how they could become insurmountable without it. Second, data labels biased the associations our analysts made and assumptions they employed, often away from the simulated causal processes those labels signified, suggesting limits on the degree to which analytic concepts developed in one domain may port to others. Third, the current standard for computational social science publication is a demonstration of novel causes, but this limits the relevance of models to solve problems and propose policies that benefit from the simpler and less surprising answers associated with most important causes, or the combination of all causes. Fourth, most singular quantitative methods applied on their own did not help to solve most analytical challenges, and we explored a range of established and emerging methods, including probabilistic programming, deep neural networks, systems of predictive probabilistic finite state machines, and more to achieve plausible solutions. However, despite these limitations common to the current practice of computational social science, we find on the positive side that even imperfect knowledge can be sufficient to identify robust prediction if a more pluralistic approach is applied. Applying competing approaches by distinct subteams, including at one point the vast TopCoder.com global community of problem solvers, enabled discovery of many aspects of the relevant structure underlying worlds that singular methods could not. Together, these lessons suggest how different a policy-oriented computational social science would be than the computational social science we have inherited. Computational social science that serves policy would need to endure more failure, sustain more diversity, maintain more uncertainty, and allow for more complexity than current institutions support. Springer US 2022-11-30 2023 /pmc/articles/PMC9713146/ /pubmed/36471867 http://dx.doi.org/10.1007/s10588-022-09362-3 Text en © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2022, Springer Nature or its licensor (e.g. a society or other partner) holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law. This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle S.I. : Ground Truth: in silico Social Science (GTIS3)
Graziul, Chris
Belikov, Alexander
Chattopadyay, Ishanu
Chen, Ziwen
Fang, Hongbo
Girdhar, Anuraag
Jia, Xiaoshuang
Krafft, P. M.
Kleiman-Weiner, Max
Lewis, Candice
Liang, Chen
Muchovej, John
Vientós, Alejandro
Young, Meg
Evans, James
Does big data serve policy? Not without context. An experiment with in silico social science
title Does big data serve policy? Not without context. An experiment with in silico social science
title_full Does big data serve policy? Not without context. An experiment with in silico social science
title_fullStr Does big data serve policy? Not without context. An experiment with in silico social science
title_full_unstemmed Does big data serve policy? Not without context. An experiment with in silico social science
title_short Does big data serve policy? Not without context. An experiment with in silico social science
title_sort does big data serve policy? not without context. an experiment with in silico social science
topic S.I. : Ground Truth: in silico Social Science (GTIS3)
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9713146/
https://www.ncbi.nlm.nih.gov/pubmed/36471867
http://dx.doi.org/10.1007/s10588-022-09362-3
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